Artificial neural network for solving the inverse kinematic model of a spatial and planar variable curvature continuum robot

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Abstract

In this paper, neural networks are presented to solve the inverse kinematic models of continuum robots. Firstly, the forward kinematic models are calculated for variable curvature continuum robots. Then, the forward kinematic models are implemented in the neural networks which present the position of the continuum robot’s end effector. After that, the inverse kinematic models are solved through neural networks without setting up any constraints. In the same context, to validate the utility of the developed neural networks, various types of trajectories are proposed to be followed by continuum robots. It is found that the developed neural networks are powerful tool to deal with the high complexity of the non-linear equations, in particular when it comes to solving the inverse kinematics model of variable curvature continuum robots. To have a closer look at the efficiency of the developed neural network models during the follow up of the proposed trajectories, 3D simulation examples through Matlab have been carried out with different configurations. It is noteworthy to say that the developed models are a needed tool for real time application since it does not depend on the complexity of the continuum robots’ inverse kinematic models.

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APA

Ghoul, A., Kara, K., Djeffal, S., Benrabah, M., & Hadjili, M. L. (2022). Artificial neural network for solving the inverse kinematic model of a spatial and planar variable curvature continuum robot. Archive of Mechanical Engineering, 69(4), 595–613. https://doi.org/10.24425/ame.2022.141518

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